Title
RNA-SeQC: RNA-seq metrics for quality control and process optimization.
Abstract
RNA-seq, the application of next-generation sequencing to RNA, provides transcriptome-wide characterization of cellular activity. Assessment of sequencing performance and library quality is critical to the interpretation of RNA-seq data, yet few tools exist to address this issue. We introduce RNA-SeQC, a program which provides key measures of data quality. These metrics include yield, alignment and duplication rates; GC bias, rRNA content, regions of alignment (exon, intron and intragenic), continuity of coverage, 3'/5' bias and count of detectable transcripts, among others. The software provides multi-sample evaluation of library construction protocols, input materials and other experimental parameters. The modularity of the software enables pipeline integration and the routine monitoring of key measures of data quality such as the number of alignable reads, duplication rates and rRNA contamination. RNA-SeQC allows investigators to make informed decisions about sample inclusion in downstream analysis. In summary, RNA-SeQC provides quality control measures critical to experiment design, process optimization and downstream computational analysis.
Year
DOI
Venue
2012
10.1093/bioinformatics/bts196
BIOINFORMATICS
Keywords
Field
DocType
gene expression profiling,rna,gene library,internet,quality control
Data mining,Data quality,Computer science,Quality control,Software,Bioinformatics,Computational analysis,Modularity,The Internet
Journal
Volume
Issue
ISSN
28
11
1367-4803
Citations 
PageRank 
References 
14
1.95
3
Authors
9
Name
Order
Citations
PageRank
David S. DeLuca1303.56
Joshua Z. Levin2305.58
Andrey Sivachenko3232.62
Tim Fennell4988143.46
Marc-Danie Nazaire5152.35
Chris Williams6141.95
M Reich7283.60
Wendy Winckler8253.32
Gad Getz924323.74